MULTI-OBJECTIVE OPTIMAL DESIGNS IN COMPARATIVE CLINICAL TRIALS WITH COVARIATES: THE REINFORCED DOUBLY ADAPTIVE BIASED COIN DESIGN
成果类型:
Article
署名作者:
Antognini, Alessandro Baldi; Zagoraiou, Maroussa
署名单位:
University of Bologna
刊物名称:
ANNALS OF STATISTICS
ISSN/ISSBN:
0090-5364
DOI:
10.1214/12-AOS1007
发表日期:
2012
页码:
1315-1345
关键词:
prognostic-factors
asymptotic properties
Optimal allocation
normal responses
EQUIVALENCE
摘要:
The present paper deals with the problem of allocating patients to two competing treatments in the presence of covariates or prognostic factors in order to achieve a good trade-off among ethical concerns, inferential precision and randomness in the treatment allocations. In particular we suggest a multipurpose design methodology that combines efficiency and ethical gain when the linear homoscedastic model with both treatment/covariate interactions and interactions among covariates is adopted. The ensuing compound optimal allocations of the treatments depend on the covariates and their distribution on the population of interest, as well as on the unknown parameters of the model. Therefore, we introduce the reinforced doubly adaptive biased coin desien, namely a general class of covariate-adjusted response-adaptive procedures that includes both continuous and discontinuous randomization functions, aimed to target any desired allocation proportion. The properties of this proposal are described both theoretically and through simulations.